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The relationship between the C-statistic of a risk-adjustment model and the accuracy of hospital report cards: A Monte Carlo study

机译:风险调整模型的C统计量与医院报告卡准确性之间的关系:蒙特卡洛研究

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Background: Hospital report cards, in which outcomes following the provision of medical or surgical care are compared across health care providers, are being published with increasing frequency. Essential to the production of these reports is risk-adjustment, which allows investigators to account for differences in the distribution of patient illness severity across different hospitals. Logistic regression models are frequently used for risk adjustment in hospital report cards. Many applied researchers use the c-statistic (equivalent to the area under the receiver operating characteristic curve) of the logistic regression model as a measure of the credibility and accuracy of hospital report cards. Objectives: To determine the relationship between the c-statistic of a risk-adjustment model and the accuracy of hospital report cards. Research Design: Monte Carlo simulations were used to examine this issue. We examined the influence of 3 factors on the accuracy of hospital report cards: the c-statistic of the logistic regression model used for risk adjustment, the number of hospitals, and the number of patients treated at each hospital. The parameters used to generate the simulated datasets came from analyses of patients hospitalized with a diagnosis of acute myocardial infarction in Ontario, Canada. Results: The c-statistic of the risk-adjustment model had, at most, a very modest impact on the accuracy of hospital report cards, whereas the number of patients treated at each hospital had a much greater impact. Conclusions: The c-statistic of a risk-adjustment model should not be used to assess the accuracy of a hospital report card. ? 2012 by Lippincott Williams & Wilkins.
机译:背景:医院报告卡越来越频繁地发布,其中将医疗服务提供者对提供医疗或手术治疗后的结果进行比较。产生这些报告的关键是风险调整,这使研究人员能够解释不同医院之间患者疾病严重性分布的差异。 Logistic回归模型通常用于医院报告卡中的风险调整。许多应用研究人员使用逻辑回归模型的c统计量(相当于接收器工作特征曲线下的面积)来衡量医院报告卡的信誉和准确性。目的:确定风险调整模型的c统计量与医院报告卡准确性之间的关系。研究设计:蒙特卡洛模拟用于研究此问题。我们检查了3个因素对医院成绩单准确性的影响:用于风险调整的逻辑回归模型的c统计量,医院数量以及每家医院接受治疗的患者数量。用于生成模拟数据集的参数来自对加拿大安大略省诊断为急性心肌梗塞的住院患者的分析。结果:风险调整模型的c统计量最多对医院报告卡的准确性影响很小,而在每家医院接受治疗的患者人数影响更大。结论:不应使用风险调整模型的c统计量来评估医院报告卡的准确性。 ? Lippincott Williams&Wilkins,2012年。

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